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Activity Number: 224
Type: Invited
Date/Time: Monday, August 1, 2016 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics in Imaging
Abstract #318489
Title: FVGWAS: Fast Voxelwise Genome-Wide Association Analysis of Large-Scale Imaging Genetic Data
Author(s): Hongtu Zhu*
Companies: The University of North Carolina at Chapel Hill
Keywords: GWAS ; imaging genetics
Abstract:

More and more large-scale imaging genetic studies are being widely conducted to collect a rich set of imaging, genetic, and clinical data to detect putative genes for complexly inherited neuropsychiatric and neurodegenerative disorders. Several major big-data challenges arise from testing genome-wide ($N_C>12$ million known variants) associations with signals at millions of locations ($N_V\sim 10^6$) in the brain from thousands of subjects ($n\sim 10^3$).The aim of this paper is to develop a Fast Voxelwise Genome Wide Association analysiS (FVGWAS) framework to efficiently carry out whole-genome analyses of whole-brain data. FVGWAS consists of three components including a heteroscedastic linear model, a fast sure independence screening (GSIS) procedure, and a detection procedure based on wild bootstrap methods. Simulation studies show that FVGWAS is an efficient method of searching sparse signals in an extremely large search space, while controlling for the family-wise error rate. Finally, we have successfully applied FVGWAS to a large-scale imaging genetic data analysis of ADNI data with 708 subjects, 193,275 voxels in RAVENS maps, and 501,584 SNPs.


Authors who are presenting talks have a * after their name.

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